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Adaptive Electrocardiogram Feature Extraction on Distributed Embedded Systems

机译:分布式嵌入式系统的自适应心电图特征提取

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Tiny embedded systems have not been an ideal outfit for high performance computing due to their constrained resources. Limitations in processing power, battery life, communication bandwidth, and memory constrain the applicability of existing complex medical analysis algorithms such as the Electrocardiogram (ECG) analysis. Among various limitations, battery lifetime has been a major key technological constraint. In this paper, we address the issue of partitioning such a complex algorithm while the energy consumption due to wireless transmission is minimized. ECG analysis algorithms normally consist of preprocessing, pattern recognition, and classification. Considering the orientation of the ECG leads, we devise a technique to perform preprocessing and pattern recognition locally in small embedded systems attached to the leads. The features detected in the pattern recognition phase are considered for the classification. Ideally, if the features detected for each heartbeat reside in a single processing node, the transmission will be unnecessary. Otherwise, to perform classification, the features must be gathered on a local node and, thus, the communication is inevitable. We perform such a feature grouping by modeling the problem as a hypergraph and applying partitioning schemes which yield a significant power saving in wireless communications. Furthermore, we utilize dynamic reconfiguration by software module migration. This technique, with respect to partitioning, enhances the overall power saving in such systems. Moreover, it adaptively alters the system configuration in various environments and on different patients. We evaluate the effectiveness of our proposed techniques on MIT/BIH benchmarks and, on average, achieve 70 percent energy saving.
机译:微小的嵌入式系统由于资源有限,因此并不是高性能计算的理想装备。处理能力,电池寿命,通信带宽和内存的限制限制了现有复杂医学分析算法(例如心电图(ECG)分析)的适用性。在各种限制中,电池寿命一直是主要的关键技术约束。在本文中,我们解决了将这种复杂算法进行划分的问题,同时将无线传输导致的能耗降至最低。 ECG分析算法通常包括预处理,模式识别和分类。考虑到ECG导线的方向,我们设计了一种在连接到导线的小型嵌入式系统中本地执行预处理和模式识别的技术。在模式识别阶段检测到的特征被考虑用于分类。理想情况下,如果为每个心跳检测到的功能都位于单个处理节点中,则不需要传输。否则,为了执行分类,必须将特征收集在本地节点上,因此通信是不可避免的。我们通过将问题建模为超图并应用分区方案来进行这样的功能分组,从而在无线通信中节省大量功率。此外,我们通过软件模块迁移利用动态重新配置。关于分区,该技术增强了这种系统中的总体功率节省。而且,它可以在各种环境和不同患者上自适应地更改系统配置。我们根据MIT / BIH基准评估了我们提出的技术的有效性,平均节省了70%的能源。

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